Health diagnostics using multi-attribute classification fusion

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Authors
Wang, Pingfeng
Tamilselvan, Prasanna
Hu, Chao
Advisors
Issue Date
2014-06
Type
Article
Keywords
Fault diagnosis , Machine learning , Classification fusion
Research Projects
Organizational Units
Journal Issue
Citation
Wang, Pingfeng; Tamilselvan, Prasanna; Hu, Chao. 2014. Health diagnostics using multi-attribute classification fusion. Engineering Applications of Artificial Intelligence, vol. 32, June 2014:ppg. 192–202
Abstract

This paper presents a classification fusion approach for health diagnostics that can leverage the strengths of multiple member classifiers to form a robust classification model. The developed approach consists of three primary steps: (i) fusion formulation using a k-fold cross validation model; (ii) diagnostics with multiple multi-attribute classifiers as member algorithms; and (iii) classification fusion through a weighted majority voting with dominance approach. State-of-the-art classification techniques from three broad categories (i.e., supervised learning, unsupervised learning, and statistical inference) were employed as member algorithms. The diagnostics results from the fusion approach will be better than, or at least as good as, the best result provided by all individual member algorithms. The developed classification fusion approach is demonstrated with the 2008 PHM challenge problem and rolling bearing health diagnostics problem. Case study results indicated that, in both problems, the developed fusion diagnostics approach outperforms any stand-alone member algorithrn with better diagnostic accuracy and robustness. (C) 2014 Elsevier Ltd. All rights reserved.

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Publisher
Elsevier Ltd.
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Book Title
Series
Engineering Applications of Artificial Intelligence;v.32
PubMed ID
DOI
ISSN
0952-1976
EISSN